Publication

Applications of artificial intelligence for water management

This publication presents how AI and Machine Learning technologies are transforming water resource management, from monitoring systems to ethical implementation considerations.
Applications of AI for water management
Moreno-Rodenas, Antonio
UNESCO
Verbist, Koen
Mertens, Annelies
Gerritsma, Isabel
Deng, Jing
Haag, Arjen
Taner, Ümit
Nuttall, Jonathan David
Dahm, Ruben
Meshgi, Ali
Korving, Hans
Bianchini, Silvia
Tofani, Veronica
Casagli, Nicola
Ray, Patrick
Rahat, Saiful Haque
Guan, Jianzhao
Chen, Yin
Zhang, Lei
Shi, Hongling
Kaltenborn, Julia
Bente, Kim
McDonald, Andrew
Derksen, Chris
Amarnath, Giriraj
Deltares
2025
0000393243

Applications of AI for water management reviews the current state-of-the-art of Artificial Intelligence (AI) and Machine Learning (ML) applications within water management, introducing some of the main concepts and providing the reader with a general understanding of different technologies and concepts. Furthermore, it features examples of the most influential applications of AI within water management and highlights the ethical challenges when streamlining AI for water resources management. 

Opportunities and limitations of AI in hydrology

The emergence of increasingly capable AI technologies is changing the technical landscape in many scientific and technical disciplines, and hydrology is no exception. The numerous applications range from surface water supply, groundwater modelling, hydropower generation, agriculture and irrigation, climate change risk and flood risk management, water-energy-food nexus, water governance, among others. 

Although AI technologies have the potential to unlock new capabilities in the context of water management, these developments are also subjected to several limitations. For instance, data-driven methods often require access to large-scale (space and time) and high-quality measurements, which sometimes are not representative of extreme values. Additionally, the lack of interpretability or explainability of these models is highly relevant since they support decisions and control over critical processes and structures, while also having ethical implications.